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Exploiting Multi-Vehicle Interactions to Improve Urban Vehicle Tracking

机译:利用多车互动改善城市车辆跟踪

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The subject of traffic flow modeling began over fifty years ago when Lighthill and Whitham used flow continuity equation from fluid dynamics to describe traffic behavior. Since then, a multitude of models, broadly classified into macroscopic, mesoscopic, and microscopic models, has been developed. Macroscopic models describe the space-time evolution of aggregate quantities such as traffic flow density whereas microscopic models describe behavior of individual drivers/vehicles in the presence of other vehicles. In this paper, we consider tracking of vehicles using a specific microscopic model known as the intelligent driver model (IDM). As in other microscopic models, the IDM equations of motion of a vehicle are nonlinearly coupled to those of neighboring vehicles, with the magnitudes of coupling terms becoming larger as vehicles get closer and smaller as vehicles get farther apart. In our approach, the state of weakly coupled groups of vehicles is represented by separated probability distributions. When the vehicles move closer to each other, the state is represented by a joint probability distribution that takes into account the interaction among vehicles. We use a sum of Gaussians approach to represent the underlying interaction structure for state estimation and reduce computational complexity. In this paper we describe our approach and illustrate the approach with simulated examples.
机译:交通流建模的主题开始于五十多年前,当时Lighthill和Whitham使用流体动力学中的流量连续性方程来描述交通行为。从那时起,已经开发了广泛地分为宏观,介观和微观模型的多种模型。宏观模型描述了诸如交通流量密度之类的总量的时空演变,而微观模型则描述了其他车辆在场时单个驾驶员/车辆的行为。在本文中,我们考虑使用称为智能驾驶员模型(IDM)的特定微观模型来跟踪车辆。与其他微观模型一样,车辆的IDM运动方程非线性地耦合到相邻车辆的运动方程,耦合项的大小随着车辆的靠近而变大,而随着车辆的距离越来越远而变小。在我们的方法中,弱耦合车辆组的状态由分离的概率分布表示。当车辆彼此靠近时,状态由考虑车辆之间相互作用的联合概率分布表示。我们使用高斯方法的总和来表示用于状态估计的底层交互结构并降低计算复杂性。在本文中,我们描述了我们的方法,并通过仿真示例说明了该方法。

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